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615 (<150): CASP10 Refinement Puzzle: TR754

Closed since over 13 years ago

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Summary


Created
August 07, 2012
Expires
Max points
100
Description

This is the twenty-fourth CASP10 Refinement Target. This model was the best server prediction for target T0754, generated by the Zhang Server. We've been told that ~77% of this model matches the native, so you'll need to refine ~23% of the structure. Luckily, this target only has 68 residues. More info in the puzzle comments. For players with fewer than 150 global points.

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Comments


beta_helix Staff Lv 1

If you are new to Foldit, here are detailed instructions to get you started:
http://fold.it/portal/node/988864


This is the page for this CASP10 refinement target:
http://predictioncenter.org/casp10/target.cgi?id=211

Note that the organizers gave us this hint:

"Starting model's GDT_TS=77."

GDT_TS=77 essentially means that ONLY 77% of the model superimposes correctly onto the native structure: